Competing Interests: The authors have declared that no competing interests exist.
Research-oriented hospitals are responsible for medical services tasks, medical education, and scientific research, playing an important role in medical research and application. The research efficiency of a clinical specialty is influenced by factors such as the characteristics of the specialty, the organizational atmosphere, and the clinical director’s leadership. The present study aimed to describe the research efficiency of clinical specialties, explore the factors influencing it, and clarify the argument of co-evolution theory regarding the collaborative development of medical services, education, and research. Logistic regression and multiple linear regression were adopted to estimate the correlation between influencing factors and scientific research efficiency. Hospital H, which is representative of research hospitals in China, was taken as an example. Taking three efficiency values—comprehensive technical efficiency (CTE), pure technical efficiency (PTE), and scale efficiency (SE)—as dependent variables, the independent variables affecting research productivity were statistically analyzed. This study also examined the scientific research efficiency of 41 specialties between 2013 and 2017, and found that the independent variables affected CTE, PTE, and SE to various degrees. Collaborative innovation in medical education and research must be based on clinical research; how to balance medical and teaching quality, and research efficiency requires further discussion. While young people play a major role on the research team because of their creativity and initiatives, which improve CTE and PTE, high-level researchers with better research and leadership abilities lead to the rational allocation and effective utilization of resources, thus improving SE. In 2013–2017, discipline construction focused on scale expansion, resulting in the decline of SE in China. Therefore, this study suggests further improvements for the efficiency of clinical specialties in research hospitals.
Many countries have placed scientific and technological innovations at the core of health and wellness. Increasing investment in medical research has improved health care. The United States has invested more than one-third of total funding in nondefense fields for National Institutes of Health (NIH) research. In the past 10 years, the average annual funding for NIH reached 30 billion dollars and has shown an increasing yearly trend [1]. The United Kingdom plans to invest 15 billion pounds in the research and development of diseases such as cancer within 10 years [2]. Johns Hopkins Hospital (JHH) and Massachusetts General Hospital (MGH) are representative of research-oriented hospitals.
In China, research hospitals began to be built in 2003 [3]; after 17 years, approximately 100 research hospitals were constructed. Given the rapid growth of research hospitals and investments in medical research, how research hospitals’ investigations can be scientifically and rationally evaluated, how research quality and efficiency can be improved, and how the application and transformation of medical research results can be maximized, have become urgent problems in medical and health institutions [4].
Scientific research is a unique creative activity [5], and its influencing factors involve the entire process of scientific research activities [6]. Scientific research efficiency is affected by the external environment and internal factors. In the past, Gu et al. identified the major factors that impact doctoral graduates’ research efficiency (DRP) in China, such as academic status, academic experience, and energy distribution [7]. Edgar et al. identified factors associated with superior research efficiency and demonstrated that autonomy and egalitarianism, along with a strong cultural ethos supporting achievement and individualism, are characteristics of high-functioning departments [8]. Sung et al. identified research manpower and expenses as the critical factors of research hospitals [9]. Hospital specialty, as a subsystem of the hospital system, is also affected by many factors [10]; however, relatively few studies have focused on aspects that influence the research efficiency of hospital specialties.
At present, research on the influencing factors of scientific research efficiency is mainly conducted through questionnaire surveys [11, 12]. In recent years, some studies have begun to use a correlation model to analyze the impact factors on research efficiency. For instance, Wang et al. constructed a multiple regression model to study the factors affecting the scientific research efficiency of 63 universities [13]. Yang applied the decision-making trial and evaluation laboratory (DEMATEL) method to analyze the influence of each factor on the efficiency evaluation of collaborative innovation research in universities. Therefore, it will be more objective to select multiple regression models to explore the influencing factors and more conducive for the improvement of scientific research efficiency.
Different influencing factors affect different objects’ research efficiency; scientific research is a long-term continuous process that is affected by multiple factors. According to Bland, and Center et al., three factors affect scientific research productivity: individual, organizational, and leadership factors [6]. Individual factors include such elements as age, title, status, and researchers’ educational background [14, 15]. Considering that a hospital is a trinity of medical services, education, and research, research activities are affected by medical services and teaching; therefore, organizational factors include medical and teaching quality [16]. The clinical specialty director determines the research direction, resource allocation, and organizational atmosphere of the specialty [17–19]. The leadership factor, therefore, includes clinical director leadership [20].
This study used China’s research-oriented Hospital H as an example. The study first aims to describe the research efficiency of clinical specialties; second, it aims to investigate the characteristics of these factors, and third, it aims to explore the factors influencing research efficiency in hospitals.
Hospital H is representative of research hospitals in China and has been ranked first among Chinese hospitals in terms of science and technology influence for seven consecutive years. Hospital H comprises 41 clinical specialties, including nonsurgical specialties (internal medicine diagnosis and treatment specialties), surgical specialties (surgical diagnosis and treatment specialties), and medical technology specialties (testing platform specialties).
The data were obtained from Hospital H’s scientific research data management system, and the extraction time was from 2013 to 2017. We analyzed the value of each specialty’s scientific research input and output, and built a Super-Epsilon-Based Measure (EBM) model based on the decision-making method to evaluate Hospital H’s scientific research efficiency [21]. The Charnes, Cooper, and Rhodes (CCR) radial model and the Banker, Charnes, and Cooper (BCC) non-radial model were used to decompose efficiency into comprehensive technical efficiency (CTE), pure technical efficiency (PTE), and scale efficiency (SE). The values for the 41 clinical specialties were calculated using MaxDea8 software.
Based on the three-dimensional factors affecting productivity, and considering the availability and representativeness of the data, we selected eight possible influencing factors: (1) medical quality: comprehensive scores of the annual assessment of specialties’ medical effectiveness (indicators include the rate of four-level operation, the complications rate, the unplanned prehospitalization rate, and the amount of new clinical technology, etc.), medical efficiency (indicators include the degree of increase in per capita medical expenses, the four-level operation ratio, the medical consumables ratio, the average number of hospitalization days, etc.), medical safety and infection (indicators include the number of medical disputes, the adverse events reporting rate, the rate of nosocomial infection outbreaks, etc.), and nursing quality (indicators include workload, post-graduation education, etc.) [22, 23]; (2) teaching quality: comprehensive scores of the annual assessment of specialties’ teaching quality based on teaching achievement, undergraduate education, graduate education, and resident training [24]; (3) discipline construction: the comprehensive reputation ranking of specialties in the annual assessments [25]; (4) specialty operation: the comprehensive scores of the annual assessment of specialty operations and adverse events [26]; (5) proportion of senior professional titles: the ratio of the number of staff with senior professional titles to all staff [27]; (6) proportion of doctors of medicine (MDs) or doctors of philosophy (PhDs): the ratio of the number of MDs or PhDs to all staff [28, 29]; (7) director leadership: a public opinion survey of the clinical director [30, 31]; and (8) age ratio: the ratio of under 40 years to over 40 years, according to the application age requirements of the National Natural Science Foundation of China (NSFC) [32].
We used multiple linear regression models to explore the impact of relevant factors on scientific research efficiency. Given that the maximum estimated value of the EBM is 1, it does not meet the condition which states that the value of the dependent variable in the classical linear regression needs to obey the normal distribution. Too many 1s lead to an unstable parameter estimation and a low-test efficiency. In this study, there were 41 decision making units (DMUs) from 2013 to 2017, with a total of 205 observation efficiency values. The observation values of CTE, PTE, and SE that were equal to 1 were 34, 68, and 34, respectively, and the cut-off value was more than 15%. To improve the model’s efficiency, the efficiency value estimated by the Super-EBM model with a window width of 3 was used as the dependent variable. The value of PTE represents the scientific research level and management ability, while the SE value represents resource allocation and utilization [33]. The specialties’ CTE, PTE, and SE were used as dependent variables to clarify the influencing factors’ effects on efficiency. The factors were used as independent variables, and the classical general linear regression was used for parameter estimation.
Owing to the large number of independent variables and a certain degree of multicollinearity, parameter estimation is bound to be unstable. This study adopted a two-way stepwise regression, and the variables were selected according to the Akaike information criterion (AIC) minimum principle. The variables included in the model are shown in Table 5. The statistical software used was R-4.0.2, and the inspection level was 0.05.
IBM1 SPSS1 Statistics software (Armonk, New York, USA) was used to analyze the data, and the participants’ general characteristics were determined by descriptive statistics. Correlations between variables were examined using bivariate correlation. Multiple linear regression analysis was performed to study the variables that can significantly influence specialties’ research efficiency.
The mean CTE, PTE, and SE values of all specialties in 2013–2017 were less than 1, and little difference was detected in the annual mean. According to the specialties’ CTE values, CTE > 1 was effective, indicating that the scientific research input had produced a good output—about 19.51%, 12.20%, 17.07%, 14.63%, and 19.51% in 2013, 2014, 2015, 2016, and 2017, respectively (Table 1).

| Options (n = 41) | 2013 | 2014 | 2015 | 2016 | 2017 |
|---|---|---|---|---|---|
| Mean of CTE | 0.74 | 0.71 | 0.76 | 0.72 | 0.69 |
| Mean of PTE | 0.77 | 0.76 | 0.92 | 0.90 | 0.77 |
| Mean of SE | 0.95 | 0.94 | 0.88 | 0.85 | 0.91 |
| Effective specialties n(%) | 8(19.51) | 5(12.20) | 7(17.07) | 6(14.63) | 8(19.51) |
Table 2 presented a mean CTE of 0.72, with the minimum and maximum being 0.24 and 3.30, respectively. The mean PTE was 0.82, with the minimum and maximum being 0.27 and 3.63, respectively. The mean SE was 0.91, with the minimum and maximum being 0.29 and 1.18, respectively.

| Options | Mean | Min | Max |
|---|---|---|---|
| CTE | 0.72 | 0.24 | 3.30 |
| PTE | 0.82 | 0.27 | 3.63 |
| SE | 0.91 | 0.29 | 1.18 |
Next, we conducted a hierarchical analysis of the average annual CTE values of the 41 specialties, positioning CTE > 1 as the first level, indicating that the efficiency was effective. Efficiency values in the range of 0.8–1 were positioned as the second level, suggesting that the efficiency was close to effective; those in the range of 0.6–0.8 were positioned as the third level, meaning that the efficiency was lower. Finally, efficiency values below 0.6 were positioned as the fourth level, indicating that the efficiency was particularly low. Table 3 shows that most of the specialties were effective or close to effective. The specialties that were inefficient and far from the effective frontier were in the minority.

| CTE classification | Frequency | Percentage |
|---|---|---|
| First level | 19 | 46.34% |
| Second level | 6 | 14.63% |
| Third level | 11 | 26.83% |
| Fourth level | 5 | 12.20% |
We collected a total of eight factors that may affect the efficiency of scientific research. We found that the distribution of age ratios in various specialties was relatively balanced, the average proportion of MDs or PhDs in each specialty was 0.45, with the minimum and maximum being 0.03 and 0.90, respectively. Polarization was more obvious. The average proportion of senior professional titles in each department was 0.34. The quantitative scores of the other five indicators are listed in Table 4.

| Variable | M±SD/Frequency (%) | Min | Max |
|---|---|---|---|
| Age Ratio (AR)* | |||
| AR1(0–0.8) | 15(36.6%) | - | - |
| AR2(0.8–1.2) | 17(41.5%) | - | - |
| AR3(>1.2) | 9(21.9%) | - | - |
| Proportion of MDs or PHDs | 0.45±0.17 | 0.03 | 0.90 |
| Proportion of Senior Professional Titles | 0.34±0.1 | 0.12 | 0.59 |
| Medical Quality | 47.56±2.24 | 43.05 | 52.14 |
| Teaching Quality | 84.98±3.1 | 78.14 | 91.87 |
| Discipline Construction | 5.54±0.34 | 4.50 | 5.93 |
| Specialist Operations | 4.55±0.24 | 4.04 | 4.96 |
| Director Leadership | 88.19±4.68 | 75.00 | 99.09 |
*AR: Ratio of under 40 years to over 40 years.
The linear correlations between the variables are shown in Table 5. Among them, director leadership showed a significant positive correlation with specialty operations (r = 0.369, p < 0.05). Teaching quality showed a positive correlation with discipline construction (r = 0.419, p < 0.01), specialty operations (r = 0.444, p < 0.01), and director leadership (r = 0.497, p < 0.01). The proportion of MDs or PhDs and proportion of senior professional titles, and age ratio and proportion of senior professional titles had a statistically obvious linear correlation, and the correlation coefficients were all greater than 0.3 (p < 0.05).

| medical quality | discipline construction | specialist operations | director leadership | teaching quality | proportion of MDs or PhDs | proportion of senior professional titles | age ratio | |
| medical quality | 1 | 0.068 | -0.065 | -0.017 | -0.065 | 0.017 | 0.126 | -0.171 |
| discipline construction | 1 | 0.174 | 0.631 | 0.419** | 0.227 | -0.023 | -0.205 | |
| specialist operations | 1 | 0.369* | 0.444** | -0.214 | -0.066 | -0.224 | ||
| director leadership | 1 | 0.497** | -0.006 | -0.178 | -0.206 | |||
| teaching quality | 1 | 0.199 | 0.022 | -0.004 | ||||
| proportion of MDs or PhDs | 1 | 0.408* | 0.167 | |||||
| proportion of senior professional titles | 1 | 0.33* | ||||||
| age ratio | 1 |
*p < 0.05
**p < 0.01.
In this study, a two-way stepwise regression was conducted to select variables based on the AIC minimum principle. For different dependent variables, the independent variables included in the model are listed in Table 6.

| Dependent variable | Independent variables |
|---|---|
| CTE | age ratio, teaching quality, medical quality, discipline construction |
| PTE | age ratio, teaching quality, medical quality, discipline construction |
| SE | teaching quality, discipline construction, proportion of senior professional titles, proportion of MDs or PhDs, director leadership |
We used the least squares method to estimate the parameters of the three models separately; the standardized parameter estimation results are listed in Table 7. When CTE was used as the dependent variable, age ratio 3 significantly improved CTE compared to the other age ratio. Teaching quality had a positive effect on CTE, while medical quality had a negative effect. Under the premise that the influencing factors were statistically significant, the standardized effect size was age ratio 3 > teaching quality > medical quality. When PTE was used as the dependent variable, the effects of age ratio, teaching quality and medical quality were consistent with the CTE model, discipline construction had a positive effect, and the standardized effect size was age ratio 3 > discipline construction = medical quality > teaching quality. In the model with SE as the dependent variable, all influencing factors were statistically significant, with discipline construction exerting a negative effect; the standardized effect size was proportion of senior professional titles > teaching quality = discipline construction > proportion of MDs or PhDs > director leadership.

| Independent variables | CTE | PTE | SE |
|---|---|---|---|
| R2 = 0.27*** | R2 = 0.21*** | R2 = 0.35*** | |
| age ratio α | |||
| age ratio 1 (0–0.8) | - | - | - |
| age ratio 2 (0.8–1.2) | 0.034 | 0.029 | - |
| age ratio 3 (>1.2) | 0.075*** | 0.074** | - |
| teaching quality | 0.062** | 0.056* | 0.018* |
| medical quality | -0.053* | -0.071* | - |
| discipline construction | 0.045 | 0.071* | -0.018* |
| proportion of senior professional titles | - | - | 0.021** |
| proportion of MDs or PhDs | - | - | 0.017* |
| director leadership | - | - | 0.013* |
α: Ratio of under 40 years to over 40 years.
*: P<0.05;
**: P<0.01,
***: P<0.001.
-: The independent variable was not included in the model.
In this regression model, the three models’ adjusted R2 values were 0.27, 0.21, and 0.35, revealing that the 27%, 21%, and 35% variance in efficiency, respectively, could be explained by the seven aforementioned variables. Compared with the zero model, the p values were all less than 0.001. The three models’ residual graphs had no obvious change rules. Except for individual extreme values, they were close to white noise, indicating that the establishment of this model and the results are reasonable.
The present study found that the mean CTE values (the proportion of research effective specialties) were 0.74 (19.51%), 0.71 (12.20%), 0.76 (17.07%), 0.72 (14.63%), and 0.69 (19.51%) for 2013, 2014, 2015, 2016, and 2017, respectively. A five-year comparison could imply that each year, the proportion of research effective specialties was in a stable fluctuation of around 15%. In total, 19 specialties were effective, and the proportion of research effective specialties was 46.34% in 2013–2017. Scientific research is a continuous, long-term process. The annual proportion of research effective specialties was relatively small, but after five years of accumulation, the output of research results increased significantly, and the overall efficiency saw a substantial increase. The proportion of research effective specialties increased to 46.34%. Regarding research specialty efficiency at Peking University People’s Hospital, Ling found that effectiveness had reached 38.90% in 2010–2015 [34]. Hospital H is a research-oriented hospital that was ranked first in scientific research among Chinese hospitals, of which 15 specialties were in the top five, and 24 specialties were in the top ten. Both, Hospital H and Peking University People’s Hospital are famous research hospitals in China, and demonstrate that approximately 40% of specialties account for the overall effectiveness for five years of input. According to Guironnet, in terms of the research efficiency of 165 American universities with a hierarchical data envelopment analysis (DEA) model, 38 units were efficient in 2012, equivalent to 23% [35], which exceeded that of medical schools in China. This shows that developed countries have more advantages in terms of short-term input and output. Therefore, specialties’ research efficiency should be brought to hospital managers’ attention, especially with regard to short-term efficiency. Further studies should explore strategies and measures to improve research efficiency.
The results of the multiple linear regression model demonstrated that research efficiency and teaching quality are positively correlated. For instance, graduate students, as the main driving force on a research team, received training from and conducted research with the team, and their research productivity was apparently influenced by teaching quality.
The synergy theory on medical service and research collaboration assumes that research results will improve the quality of medical services [36]. However, due to the competition between clinical service and scientific research for resources, including people and time, it is difficult for clinicians to balance clinical work and medical research, as they are expected to be effective at curing patients while focusing on research. In 2013–2017, domestic medical research in China attached importance to basic research, and clinical research was relatively weak. In addition, the clinical application of basic research results generally took a long time. Although there is considerable research output based on basic research, it cannot directly lead to an outstanding quality of medical services. In conclusion, medical quality had a negative effect on medical research efficiency in China during 2013–2017. Our study suggests that medical research should focus on solving clinical problems; therefore, the collaborative innovation of medical services, medical education, and medical research must be based on clinical research. Questions on how to balance medical and teaching quality, and research efficiency require further discussion.
Taking the 40 years as the limit [37], an age ratio of greater than 1.2 can significantly improve the efficiency of scientific research. This shows that young people’s role in research teams is more important because their creativity drives technological innovation, thus resulting in improved PTE and CTE. The proportion of senior professional titles has the greatest positive effect on SE, and the allocation and utilization of resources is mainly based on researchers with senior professional titles; therefore, the higher the proportion, the more the available resources. The proportion of staff with doctoral degrees or senior professional titles is a symbol of academic qualifications [38, 39], and a high proportion indicates a high-level research ability; in addition, the use of resources is more effective, positively affecting SE. Similarly, the clinical director’s leadership is reflected in their ability to organize and mobilize [40, 41]. Reasonable, effective resource allocation will help improve SE. Discipline construction has a positive effect on PTE, as it promotes the introduction of advanced technology and innovation in management mechanisms. The better the discipline construction, the higher the PTE. However, discipline construction has a negative effect on SE. During 2013–2017 in China, in order to enhance the academic reputation, discipline construction of the specialties focused on scale construction, which resulted in an improved academic reputation; however, it ignored efficient resource utilization.
A limitation of our study is the incompleteness of the factors. Research is a long-term, complex, productive activity and is affected by many factors. Based on the theory of scientific research productivity, we screened eight indicators that might affect specialties’ research efficiency in hospitals and also considered the feasibility of indicator data acquisition.
According to the models’ adjusted R2 (0.27, 0.21, 0.35), the selected variables in the three models had a certain degree of explanatory strength for the changes in efficiency; the strength was relatively small, however, suggesting that the specialties’ efficiency values maybe were also determined by other factors such as physician–nurse ratio, number of beds, medical research time ratio, teaching, and research motivation. We will continue to explore other influencing factors and improve the influencing factor system to better reveal the influencing mechanism and effectiveness.
The five-year effectiveness ratio of research hospitals’ specialties is approximately 50% in China. In terms of research efficiency, more than half of the specialties were ineffective, indicating input redundancy. The annual scientific research efficiency in developed countries is significantly higher than that of China, owing to the advantages of technology and other mechanisms. Regarding the abovementioned factors, the results demonstrated the co-evolution of teaching and research. Collaborative innovation in medical quality and research must be based on clinical research. Methods for balancing medical and teaching quality, and research efficiency require further discussion. While young people are creative with strong initiatives, high-level researchers have better scientific research abilities; better leadership abilities lead to rational allocation and effective utilization of resources, which would result in improvements in efficiency. Discipline construction should not focus on the construction of scale in the next few years. The study’s findings provide ideas for further improving the research efficiency of clinical specialties in research-oriented hospitals.
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